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LECTURE 5 5 FEBRUARY 2009 STA291 Fall 2008 1

LECTURE 5 5 FEBRUARY 2009 STA291 Fall 2008 1. Itinerary 2.3 Graphical Techniques for Interval Data (mostly review) 2.4 Describing the Relationship Between

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LECTURE 55 FEBRUARY 2009

STA291Fall 2008

1

Itinerary

• 2.3 Graphical Techniques for Interval Data (mostly review)

• 2.4 Describing the Relationship Between Two Variables

• 3 Art and Science of Graphical Presentations

2

Administrative Notes and Homework

• Use the Study Tools at Cengage Now, click on the “Personalized Study Book” with the same title page as our textbook, and work through “Chapter 2 – Graphical and Tabular Descriptive Techniques”. This involves taking a pre-test, working through a personalized study plan, and then taking a post-test.

• Please read Chapter 3 about the Art & Science of graphical presentations.

• Suggested problems from the textbook (not graded, but good as exam preparation): 2.74, 2.76, 3.12

3

Review: Graphical/Tabular Descriptive Statistics

• Summarize data

• Condense the information from the dataset

• Always useful: Frequency distribution

• Interval data: Histogram (Stem-and-Leaf?)

• Nominal/Ordinal data: Bar chart, Pie chart

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Stem and Leaf Plot

• Write the observations ordered from smallest to largest (stems, certainly)

• Each observation is represented by a stem (leading digit(s)) and a leaf (final digit)

• Looks like a histogram sideways• Contains more information than a

histogram, because every single measurement can be recovered

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Stem and Leaf Plot

• Useful for small data sets (<100 observations)– Example of an EDA

• Practical problem:– What if the variable is measured on acontinuous scale, with measurements like1267.298, 1987.208, 2098.089, 1199.082,1328.208, 1299.365, 1480.731, etc.– Use common sense when choosing “stem”and “leaf”

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Stem-and-Leaf Example: Age at Death for Presidents

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Example (Percentage) Histogram8

Side by side?

Similarities/differences?

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Sample/Population Distribution

• Frequency distributions and histograms exist for the population as well as for the sample

• Population distribution vs. sample distribution

• As the sample size increases, the sample distribution looks more and more like the population distribution

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Describing Distributions

• Center, spread (numbers later)

• Symmetric distributions– Bell-shaped or U-shaped

• Not symmetric distributions:– Left-skewed or right-skewed

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On to examining two variables for relationships . . .

Describing the Relationship BetweenTwo Nominal (or Ordinal) Variables

Contingency Table• Number of subjects observed at all

the combinations of possible outcomes for the two variables

• Contingency tables are identified by their number of rows and columns

• A table with 2 rows and 3 columns is called a 2 x 3 table (“2 by 3”)

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2 x 2 Contingency Table: Example

• 327 commercial motor vehicle drivers who hadaccidents in Kentucky from 1998 to 2002• Two variables:

– wearing a seat belt (y/n)– accident fatal (y/n)

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2 x 2 Contingency Table: Example, cont’d.

• How can we compare fatality rates for the two groups?

• Relative frequencies or percentages within each row

• Two sets of relative frequencies (for seatbelt=yes and for seatbelt=no), called row relative frequencies

• If seat belt use and fatality of accident are related, then there will be differences in the row relative frequencies

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Row relative frequencies

• Two variables:– wearing a seat belt (y/n)– accident fatal (y/n)

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Describing the Relationship BetweenTwo Interval Variables

Scatter Diagram• In applications where one variable depends

to some degree on the other variables, we label the dependent variable Y and the independent variable X

• Example:Years of education = XIncome = Y

• Each point in the scatter diagram corresponds to one observation

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Scatter Diagram of Murder Rate (Y) andPoverty Rate (X) for the 50 States

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3.1 Good Graphics …

• … present large data sets concisely and coherently

• … can replace a thousand words and still be clearly understood and comprehended

• … encourage the viewer to compare two or more variables

• … do not replace substance by form • … do not distort what the data reveal• … have a high “data-to-ink” ratio

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3.2 Bad Graphics…

• …don’t have a scale on the axis• …have a misleading caption• …distort by stretching/shrinking the vertical

or horizontal axis• …use histograms or bar charts with bars of

unequal width• …are more confusing than helpful

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Bad Graphic, Example22

Attendance Survey Question #5

• On an index card– Please write down your name and section

number– Today’s Question: